Working Paper2022

Should retail investors listen to social media analysts? Evidence from text-implied beliefs

Authors: Dim

Abstract

This paper uses machine learning to infer nonprofessional social media investment analysts' (SMAs) beliefs from their opinions on individual stocks. SMAs' average beliefs predict future abnormal returns and earnings surprises. However, there exists substantial heterogeneity in SMAs' ability to form beliefs that yield investment value. Some 13% high-skilled SMAs form beliefs that yield a sizeable one-week three-factor alpha of 61 bps, while the remaining 87% low-skilled SMAs generate only 6 bps. Firm and industry specializations are the most distinctive characteristics of high-skilled SMAs. When forming beliefs, SMAs extrapolate from past returns and herd on the consensus view of their peers. However, these seemingly behavioral biases do not result in systematically wrong beliefs.

Keywords

Nonprofessional analystsbelief formationinvestor skillmarket efficiencyherdingextrapolationmachine learningnatural language processing

Tags of Social Finance

#Archival Empirical#Media and Textual Analysis#Financing- and Investment Decisions (Individual)#Asset Pricing & Trading Volume and Market Efficiency#Social Network Structure